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An approach to surface EMG decomposition based on higher-order cumulants.

机译:一种基于高阶累积量的表面肌电分解方法。

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摘要

We are addressing a possible approach to the decomposition of surface electromyograms (SEMGs). It is based on higher-order cumulants implemented in a two-step procedure. Firstly, a multivariate version of the w-slice method is applied in order to extract coarse approximations of motor-unit action potentials (MUAPs) out of the measured SEMGs. Secondly, these coarse estimates are refined by modified Newton-Gauss iteration to achieve an optimum fit of the model-based and the observation-based cumulant estimates. All the necessary conditions are derived theoretically and, afterwards, implemented in simulation runs in order to prove the decomposition power of the proposed approach on synthetic SEMGs. The first-norm difference between the original and the decomposed MUAPs, obtained at the signal length of 102400 samples and expressed in percentage of the MUAP amplitude span, yields 5.4% in the noise-free case, 6.0% with a signal-to-noise ratio (SNR) of 10dB, and 6.5% with a SNR of 0 dB.
机译:我们正在研究一种分解表面肌电图(SEMG)的可能方法。它基于两步过程中实现的高阶累积量。首先,应用w-slice方法的多元版本,以便从测得的SEMG中提取出运动单位动作电位(MUAP)的粗略近似值。其次,通过修改的牛顿-高斯迭代对这些粗略估计进行细化,以实现基于模型和基于观测的累积量估计的最佳拟合。从理论上推导了所有必要条件,然后在仿真运行中加以实施,以证明所提出的方法在合成SEMG上的分解能力。原始和分解后的MUAP之间的第一范数差异是在102400个样本的信号长度处获得的,并以MUAP幅度跨度的百分比表示,在无噪声的情况下产生5.4%,在有信噪比的情况下产生6.0%信噪比(SNR)为10dB,而6.5%信噪比为0 dB。

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